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Independent Vector Analysis based Convolutive Speech Separation by Estimating Entropy using Recursive Copula Splitting

机译:基于独立的矢量分析基于卷曲的卷曲分离方法递归拷贝谱分裂

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Speeches in real world environment are normally mixed together convolutedly. The speech mixtures are not instantaneous at all. Rather speeches are mixed component wise. Independent Vector Analysis (IVA) is an approach for separating convolutive mixture in frequency domain. Entropy estimation is an important part of IVA. In this paper, IVA is implemented by estimating entropy using recursive copula splitting. It measures entropy by decomposing probability density function (PDF) into a product of marginal (1D) densities and a copula. This entropy estimator improves IVA performance in different types of real world speech mixtures. We have proved that by estimating entropy using recursive copula splitting makes IVA algorithm simple and more efficient'.
机译:现实世界环境中的演讲通常被混合在一起。语音混合物根本不是瞬间。相反,演讲是混合组成的明智。独立的载体分析(IVA)是一种分离频域中卷曲混合物的方法。熵估计是IVA的重要组成部分。在本文中,IVA通过使用递归拷贝拷贝分裂估计熵来实现。它通过将概率密度函数(PDF)分解成边缘(1D)密度和谱系的乘积来测量熵。该熵估计器在不同类型的现实世界语音混音中提高了IVA性能。我们已经证明,通过使用递归拷贝的熵估算熵,使IVA算法简单且效率更高。

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